
pmid: 17046149
Neural computations are modelled in various ways, but still there is no clear understanding of how the brain performs its computational tasks. This paper presents new results about analysis of neural processes in terms of activity pattern computations. It is shown that it is possible to extract from high-resolution EEG data a first order Markov approximation of a neural communication system employing pattern computations, which is significantly different from similar purely random systems. In our view this result shows that it is likely that neural activity patterns measurable at the macro-level by EEG are correlated with underlying neural computations.
Cerebral Cortex, Systems Biology, Models, Neurological, Cats, Animals, Computational Biology, Electroencephalography
Cerebral Cortex, Systems Biology, Models, Neurological, Cats, Animals, Computational Biology, Electroencephalography
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